I am running a spark cluster over C++ code wrapped in python. I am currently testing different configurations of multi-threading options (at Python level or Spark level).

I am using spark with standalone binaries, over a HDFS 2.5.4 cluster. The cluster is currently made of 10 slaves, with 4 cores each.

From what I can see, by default, Spark launches 4 slaves per node (I have 4 python working on a slave node at a time).

How can I limit this number ? I can see that I have a --total-executor-cores option for "spark-submit", but there is little documentation on how it impacts the distribution of executors over the cluster !

I will run tests to get a clear idea, but if someone knowledgeable has a clue of what this option does, it could help.

Update :

I went through spark documentation again, here is what I understand :

  • By default, I have one executor per worker node (here 10 workers node, hence 10 executors)
  • However, each worker can run several tasks in parallel. In standalone mode, the default behavior is to use all available cores, which explains why I can observe 4 python.
  • To limit the number of cores used per worker, and limit the number of parallel tasks, I have at least 3 options :
    • use --total-executor-cores whith spark-submit (least satisfactory, since there is no clue on how the pool of cores is dealt with)
    • use SPARK_WORKER_CORES in the configuration file
    • use -c options with the starting scripts

The following lines of this documentation http://spark.apache.org/docs/latest/spark-standalone.html helped me to figure out what is going on :

Number of worker instances to run on each machine (default: 1). You can make this more than 1 if you have have very large machines and would like multiple Spark worker processes. If you do set this, make sure to also set SPARK_WORKER_CORES explicitly to limit the cores per worker, or else each worker will try to use all the cores.

What is still unclear to me is why it is better in my case to limit the number of parallel tasks per worker node to 1 and rely on my C++ legacy code multithreading. I will update this post with experiment results, when I will finish my study.

  • From your update, what it seems unclear to me is how you have reached the conclusion that it is better to limit the number of parallel tasks and rely on your C++ code multithreading. May 5, 2015 at 7:34
  • Well I am actually running a set of specific experiments, to check wether it is more intersting to rely on usual legacy multithreading or use Spark approach. I am running on google cloud, and in my specific image processing case the best compromise is : for a worker with N cores, have N/2 parallel jobs using spark, each job multithreaded on 2 threads using openMP. For instance : 8 workers node with 16 cores, best compromise is 64 parallel jobs, and each of them multithreaded on 2 cores. The opposite (16 parallel jobs, each of them over MT over 8 cores is twice slower). May 18, 2015 at 15:02
  • Thanks for the acclaration. May 18, 2015 at 15:38

2 Answers 2


The documentation does not seem clear.

From my experience, the most common practice to allocate resources is by indicating the number of executors and the number of cores per executor, for example (taken from here):

$ ./bin/spark-submit --class org.apache.spark.examples.SparkPi \
--master yarn-cluster \
--num-executors 10 \
--driver-memory 4g \
--executor-memory 2g \
--executor-cores 4 \
--queue thequeue \
lib/spark-examples*.jar \

However, this approach is limited to YARN, and is not applicable to standalone and mesos based Spark, according to this.

Instead, the parameter --total-executor-cores can be used, which represents the total amount of cores - of all executors - assigned to the Spark job. In your case, having a total of 40 cores, setting the attribute --total-executor-cores 40 would make use of all the available resources.

Unfortunately, I am not aware of how Spark distributes the workload when less resources than the total available are provided. If working with two or more simultaneous jobs, however, it should be transparent to the user, in that Spark (or whatever resource manager) would manage how the resources are managed depending on the user settings.

  • Thanks, from my first experiments, it looks like the cores are distributed among the available executors (no executor set to zero cores). May 4, 2015 at 19:42
  • That is what I thought it would do. However, it is an interesting fact that has now been proven. May 5, 2015 at 7:27

To make sure how many workers started on each slave, open web browser, type http://master-ip:8080, and see the workers section about how many workers has been started exactly, and also which worker on which slave. (I mention these above because I am not sure what do you mean by saying '4 slaves per node')

By default, spark would start exact 1 worker on each slave unless you specify SPARK_WORKER_INSTANCES=n in conf/spark-env.sh, where n is the number of worker instance you would like to start on each slave.

When you submit a spark job through spark-submit, spark would start an application driver and several executors for your job.

  • If not specified clearly, spark would start one executor for each worker, i.e. the total executor num equal to the total worker num, and all cores would be available to this job.
  • --total-executor-cores you specified would limit the total cores that is available to this application.
  • thanks for the answer, i updated my post with a clear distinction between "executor" and "tasks" May 4, 2015 at 19:40
  • I'm using Spark on EMR and I don't have anything at 8080?
    – lfk
    Apr 23, 2018 at 7:39

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